Artificial intelligence (AI) streamlining users’ conversion to paying customers (Q10117)

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Revision as of 16:30, 25 February 2020 by DG Regio (talk | contribs) (‎Created claim: summary (P836): The project aims at research and development of technology to improve the efficiency of investment in customer acquisition, based on the most recent knowledge of science and research in optimising genetic algorithms in combination with physical learning using deep neurolearning networks. The project will result in a system that, over a long period of time before the customer switching to the customer, will be able to predict the likelihood of th...)
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Project in Czech Republic financed by DG Regio
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Artificial intelligence (AI) streamlining users’ conversion to paying customers
Project in Czech Republic financed by DG Regio

    Statements

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    8,853,085.8 Czech koruna
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    354,123.43200000003 Euro
    10 January 2020
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    18,642,000.0 Czech koruna
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    745,680.0 Euro
    10 January 2020
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    47.49 percent
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    1 January 2016
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    29 September 2019
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    Webnode CZ s.r.o.
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    49°11'25.62"N, 16°35'15.97"E
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    60300
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    Cílem projektu je výzkum a vývoj technologie pro zvyšování efektivity investic do získávání zákazníků, která bude vycházet z nejnovějších poznatků vědy a výzkumu v oblasti optimalizace genetickými algoritmy v kombinaci se strojovým učením pomocí hlubokých neuronových sítí (deep learning). Výsledkem projektu bude systém, který v době dlouho před konverzí uživatele na platícího zákazníka bude schopen predikovat pravděpodobnost, s jakou se časem stane platícím zákazníkem. a. (Czech)
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    The project aims at research and development of technology to improve the efficiency of investment in customer acquisition, based on the most recent knowledge of science and research in optimising genetic algorithms in combination with physical learning using deep neurolearning networks. The project will result in a system that, over a long period of time before the customer switching to the customer, will be able to predict the likelihood of the time it takes to pay a client. a. (English)
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    Identifiers

    CZ.01.1.02/0.0/0.0/15_018/0004788
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